In line with the development of Industry 4.0, more and more attention is attracted to the field of surface defect detection. Improving efficiency as well as saving labor costs has steadily become a matter of great concern in industry field, where deep learning-based algorithms performs better than traditional vision inspection methods in recent years. While existing deep learning-based algorithms are biased towards supervised learning, which not only necessitates a huge amount of labeled data and a significant amount of labor, but it is also inefficient and has certain limitations. In contrast, recent research shows that unsupervised learning has great potential in tackling above disadvantages for visual industrial anomaly detection. In this survey, we summarize current challenges and provide a thorough overview of recently proposed unsupervised algorithms for visual industrial anomaly detection covering five categories, whose innovation points and frameworks are described in detail. Meanwhile, information on publicly available datasets containing surface image samples are provided. By comparing different classes of methods, the advantages and disadvantages of anomaly detection algorithms are summarized. It is expected to assist both the research community and industry in developing a broader and cross-domain perspective.
翻译:根据工业4.0的发展,越来越多的注意力被吸引到表面缺陷检测领域。提高效率和节省劳动力成本在工业领域已逐渐成为一个令人十分关切的问题,因为深层次的学习算法近年来比传统的视觉检查方法效果更好。虽然现有的深层次的学习算法偏向于监督学习,这不仅需要大量贴标签的数据和大量劳动力,而且还效率低下,而且存在某些局限性。相比之下,最近的研究表明,未经监督的学习在解决视觉工业异常现象检测的上述劣势方面有很大潜力。在这次调查中,我们总结了当前的挑战,并全面概述了最近提出的视觉工业异常现象检测的未经监督算法,涵盖五个类别,这些类别有创新点和框架,同时提供了含有表面图像样本的公开数据集的信息。通过比较不同种类的方法,可以总结异常检测算法的利弊。预计这将有助于研究界和工业界从更广泛和跨领域的角度发展。